首页> 外文会议>Conference on image processing >Ball-Scale Based Hierarchical Multi-Object Recognition in 3D Medical Images
【24h】

Ball-Scale Based Hierarchical Multi-Object Recognition in 3D Medical Images

机译:基于球尺度的3D医学图像分层多目标识别

获取原文

摘要

This paper investigates, using prior shape models and the concept of ball scale (b-scale), ways of automatically recognizing objects in 3D images without performing elaborate searches or optimization. That is, the goal is to place the model in a single shot close to the right pose (position, orientation, and scale) in a given image so that the model boundaries fall in the close vicinity of object boundaries in the image. This is achieved via the following set of key ideas: (a) A semi-automatic way of constructing a multi-object shape model assembly, (b) A novel strategy of encoding, via b-scale, the pose relationship between objects in the training images and their intensity patterns captured in b-scale images. (c) A hierarchical mechanism of positioning the model, in a one-shot way, in a given image from a knowledge of the learnt pose relationship and the b-scale image of the given image to be segmented. The evaluation results on a set of 20 routine clinical abdominal female and male CT data sets indicate the following: (1) Incorporating a large number of objects improves the recognition accuracy dramatically. (2) The recognition algorithm can be thought as a hierarchical framework such that quick replacement of the model assembly is defined as coarse recognition and delineation itself is known as finest recognition. (3) Scale yields useful information about the relationship between the model assembly and any given image such that the recognition results in a placement of the model close to the actual pose without doing any elaborate searches or optimization. (4) Effective object recognition can make delineation most accurate.
机译:本文使用现有的形状模型和球形标度(b-scale)的概念,研究了无需执行详尽的搜索或优化即可自动识别3D图像中的对象的方法。也就是说,目标是将模型放置在给定图像中接近正确姿势(位置,方向和比例)的单张照片中,以使模型边界落在图像中对象边界的附近。这是通过以下一组关键思想来实现的:(a)一种构建多对象形状模型组件的半自动方式,(b)一种通过b尺度对物体中的姿态关系进行编码的新颖策略。训练图像及其在b尺度图像中捕获的强度模式。 (c)一种分层机制,该机制基于对所学习的姿势关系和要分割的给定图像的b尺度图像的了解,以单次方式将模型定位在给定图像中。对一组20例常规的临床腹部腹部女性和男性CT数据集的评估结果表明:(1)合并大量对象可以显着提高识别精度。 (2)可以将识别算法视为一个层次框架,以便将模型组件的快速替换定义为粗略识别,而将轮廓本身称为最佳识别。 (3)比例尺可产生有关模型组件与任何给定图像之间关系的有用信息,以使识别结果可将模型放置在接近实际姿势的位置,而无需进行任何详尽的搜索或优化。 (4)有效的物体识别可以使描绘最准确。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号